Install
openclaw skills install afrexai-ai-adoption-readinessAssess organizational readiness for AI adoption across 6 dimensions: culture, data maturity, tech stack, leadership buy-in, skills/talent, and process maturity. Generates a scored readiness report with gap analysis and a prioritized action plan. Use before building a change management plan to understand where an organization actually stands. Built by AfrexAI.
openclaw skills install afrexai-ai-adoption-readinessScore how prepared an organization is to adopt AI agents and automation. Identifies gaps before they become failed implementations. Pairs with the change-management-plan skill — run this first, then feed results into the change plan.
The user describes their organization. The agent conducts the assessment.
Organization: [Company name, size, industry]
AI Initiative: [What they want to do with AI]
Department/Scope: [Which teams are involved]
Current Tools: [Existing tech stack, any AI tools already in use]
Budget Range: [Approximate budget for AI initiatives]
Timeline Pressure: [When do they need this working?]
Known Blockers: [Anything they already know is a problem]
If the user provides partial info, ask for missing critical fields (Organization, AI Initiative, and Scope at minimum). Infer reasonable defaults for the rest.
Each dimension scores 1-5:
Overall Readiness = weighted average of all 6 dimensions.
Assess openness to change, experimentation, and technology adoption.
| Score | Description |
|---|---|
| 1 | Strong resistance to change. "We've always done it this way." Fear-based culture. |
| 2 | Passive resistance. Leadership wants change but teams don't. No experimentation culture. |
| 3 | Mixed — some teams innovate, others resist. No consistent change approach. |
| 4 | Generally open to change. Past tech adoptions went OK. Some experimentation happening. |
| 5 | Innovation culture. Teams actively seek better tools. Failure is treated as learning. |
Assess data quality, accessibility, and governance — AI is only as good as its data.
| Score | Description |
|---|---|
| 1 | Data lives in spreadsheets and email. No standards. No governance. |
| 2 | Some databases exist but siloed. Manual data entry. No quality checks. |
| 3 | Central data store exists. Some governance. Quality is inconsistent. |
| 4 | Clean, accessible data. Governance in place. Teams use data for decisions. |
| 5 | Data platform with automated quality checks. Real-time access. Strong governance. |
Assess whether the tech stack can support AI tools and integrations.
| Score | Description |
|---|---|
| 1 | Legacy systems, no APIs, manual deployments. On-prem only. |
| 2 | Mix of legacy and modern. Some APIs. Basic cloud usage. |
| 3 | Mostly modern stack. APIs for major systems. Cloud infrastructure. |
| 4 | Cloud-native. API-first architecture. CI/CD. Security controls in place. |
| 5 | Modern platform with integration layer. Infrastructure as code. Zero-trust security. |
Assess executive commitment — AI adoption without leadership backing fails 90% of the time.
| Score | Description |
|---|---|
| 1 | No executive sponsor. AI is a curiosity, not a strategy. |
| 2 | Interested executive but no budget or authority allocated. |
| 3 | Sponsor exists with some budget. AI tied to vague "efficiency" goals. |
| 4 | Strong sponsor. Clear business case. Budget allocated. Willing to iterate. |
| 5 | C-suite aligned. AI is strategic priority. Multi-year commitment. Success metrics defined. |
Assess whether the team can use, manage, and maintain AI tools.
| Score | Description |
|---|---|
| 1 | No technical talent. Team can barely use current tools. |
| 2 | Some tech-savvy individuals but no AI knowledge. No training plan. |
| 3 | General technical competence. 1-2 people with AI awareness. Training possible. |
| 4 | Technical team capable of managing integrations. AI training underway. |
| 5 | In-house AI expertise. Team can evaluate, customize, and maintain AI tools. |
Assess whether processes are documented and consistent enough for AI to augment.
| Score | Description |
|---|---|
| 1 | No documentation. Tribal knowledge. Inconsistent execution. |
| 2 | Some processes documented but outdated. Inconsistent across teams. |
| 3 | Key processes documented. Some KPIs tracked. Mostly consistent. |
| 4 | Well-documented processes with metrics. Clear candidates for AI. |
| 5 | Process excellence. Documented, measured, optimized. Ready for intelligent automation. |
Generate the full report in this structure:
For each of the 6 dimensions:
Phased action plan based on overall score:
If Red (< 2.0): 6-month foundation phase
If Orange (2.0–2.9): 3-month preparation phase
If Yellow (3.0–3.9): Parallel track
If Green (4.0+): Accelerate
3-5 actions that can start this week with no budget and minimal effort. These build momentum.
Top 5 risks to AI adoption success, each with:
change-management-plan skill for a full rollout plan"This skill is designed to work in a pipeline:
Recommend the next skill based on assessment results.